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首页> 外文期刊>IEEE Transactions on Robotics >Visual Tracking in Cluttered Environments Using the Visual Probabilistic Data Association Filter
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Visual Tracking in Cluttered Environments Using the Visual Probabilistic Data Association Filter

机译:使用视觉概率数据关联过滤器在混乱环境中进行视觉跟踪

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摘要

Visual tracking in cluttered environments is attractive and challenging. This paper establishes a probabilistic framework, called the visual probabilistic data-association filter (VPDAF), to deal with this problem. The algorithm is based on the probabilistic data-association method for estimating a true target from a cluster of measurements. There are two other key concepts which are involved in VPDAF. First, the sensor data are visual, similar to the target in the image space, which is a crucial property that should not be ignored in target estimation. Second, the traditional probabilistic data-association filter for the underlying application is vulnerable to stationary disturbances in image space, mainly due to some annoying background scenes which are rather similar to the target. Intuitively, such persistent noises should be separated out and cleared away from the continuous measurement data for seeking successful target detection. The proposed VPDAF framework, which incorporates template matching, can achieve the goal of reliable realtime visual tracking. To demonstrate the superiority of the system performance, extensive yet challenging experiments have been conducted
机译:在混乱的环境中进行视觉跟踪既有吸引力又具有挑战性。本文建立了一个概率框架,称为视觉概率数据关联过滤器(VPDAF),以解决此问题。该算法基于概率数据关联方法,用于从一组测量结果中估算真实目标。 VPDAF还涉及其他两个关键概念。首先,传感器数据是可视的,类似于图像空间中的目标,这是至关重要的属性,在目标估计中不应忽略。其次,用于底层应用程序的传统概率数据关联过滤器易受图像空间中平稳干扰的影响,这主要是由于一些令人讨厌的背景场景与目标非常相似。凭直觉,应将此类持续性噪声从连续测量数据中分离出来并清除掉,以寻求成功的目标检测。所提出的VPDAF框架结合了模板匹配,可以实现可靠的实时视觉跟踪的目标。为了证明系统性能的优越性,进行了广泛而富有挑战性的实验

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